A Deep Learning-based PPG Quality Assessment Approach for Heart Rate and Heart Rate Variability

Emad Kasaeyan Naeini, Fatemeh Sarhaddi, I. Azimi, P. Liljeberg, N. Dutt, A. Rahmani
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Abstract

Photoplethysmography (PPG) is a non-invasive optical method to acquire various vital signs, including heart rate (HR) and heart rate variability (HRV). The PPG method is highly susceptible to motion artifacts and environmental noise. Unfortunately, such artifacts are inevitable in ubiquitous health monitoring, as the users are involved in various activities in their daily routines. Such low-quality PPG signals negatively impact the accuracy of the extracted health parameters, leading to inaccurate decision-making. PPG-based health monitoring necessitates a quality assessment approach to determine the signal quality according to the accuracy of the health parameters. Different studies have thus far introduced PPG signal quality assessment methods, exploiting various indicators and machine learning algorithms. These methods differentiate reliable and unreliable signals, considering morphological features of the PPG signal and focusing on the cardiac cycles. Therefore, they can be utilized for HR detection applications. However, they do not apply to HRV, as only having an acceptable shape is insufficient, and other signal factors may also affect the accuracy. In this paper, we propose a deep learning-based PPG quality assessment method for HR and various HRV parameters. We employ one customized one-dimensional (1D) and three two-dimensional (2D) Convolutional Neural Networks (CNN) to train models for each parameter. Reliability of each of these parameters will be evaluated against the corresponding electrocardiogram signal, using 210 hours of data collected from a home-based health monitoring application. Our results show that the proposed 1D CNN method outperforms the other 2D CNN approaches. Our 1D CNN model obtains the accuracy of 95.63%, 96.71%, 91.42%, 94.01%, and 94.81% for the HR, average of normal to normal interbeat (NN) intervals (AVNN), root mean square of successive NN interval differences (RMSSD), standard deviation of NN intervals (SDNN), and ratio of absolute power in low frequency to absolute power in high frequency (LF/HF) ratios, respectively. Moreover, we compare the performance of our proposed method with state-of-the-art algorithms. We compare our best models for HR-HRV health parameters with six different state-of-the-art PPG signal quality assessment methods. Our results indicate that the proposed method performs better than the other methods. We also provide the open-source model implemented in Python for the community to be integrated into their solutions.
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基于深度学习的心率和心率变异性的PPG质量评估方法
Photoplethysmography (PPG)是一种非侵入性的光学方法,可获取各种生命体征,包括心率(HR)和心率变异性(HRV)。该方法极易受到运动伪影和环境噪声的影响。不幸的是,由于用户在日常生活中涉及各种活动,因此在无处不在的健康监测中,此类工件是不可避免的。这种低质量的PPG信号对提取健康参数的准确性产生负面影响,导致决策不准确。基于ppg的健康监测需要一种质量评估方法,根据健康参数的准确性来确定信号质量。迄今为止,不同的研究引入了PPG信号质量评估方法,利用了各种指标和机器学习算法。这些方法区分可靠和不可靠的信号,考虑到PPG信号的形态学特征,并关注心脏周期。因此,它们可以用于人力资源检测应用。然而,它们不适用于HRV,因为只有可接受的形状是不够的,其他信号因素也可能影响精度。在本文中,我们提出了一种基于深度学习的HR和各种HRV参数的PPG质量评估方法。我们使用一个定制的一维(1D)和三个二维(2D)卷积神经网络(CNN)来训练每个参数的模型。每个参数的可靠性将根据相应的心电图信号进行评估,使用从家庭健康监测应用程序收集的210小时数据。我们的结果表明,所提出的一维CNN方法优于其他二维CNN方法。我们的1D CNN模型在HR、正态与正态间隔(NN)均值(AVNN)、连续NN间隔差的均方根(RMSSD)、NN间隔标准差(SDNN)和低频绝对功率与高频绝对功率之比(LF/HF)方面的准确率分别为95.63%、96.71%、91.42%、94.01%和94.81%。此外,我们将我们提出的方法与最先进的算法的性能进行了比较。我们将我们的最佳HR-HRV健康参数模型与六种不同的最先进的PPG信号质量评估方法进行比较。结果表明,该方法的性能优于其他方法。我们还提供了用Python实现的开源模型,以便社区将其集成到他们的解决方案中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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